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Long memory components in macroeconomic series: Are we missing something?

机译:宏观经济系列中的长记忆成分:我们是否缺少某些东西?

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In this paper it is shown that there are strong statistical evidences towards the presence of long memory components in three American macroeconomic time series (Output Gap, M1 Quantity of Money and Real Interest Rates). Moreover, in this paper is presented two Fractionally Integrated Vector Autoregression (FIVAR) models with the fractional difference coefficients estimated using two different procedures aiming to forecast key macroeconomic variables of the American economy. They are compared against a standard Vector Autoregression (VAR) model, and it is shown that the FIVAR models outperform significantly the traditional VAR in forecasting capabilities, suggesting that the usage of fractional difference parameter and the consideration of long memory provides a more robust estimation (as a consequence of the reduction of parameters to be estimated).
机译:本文表明,在三个美国宏观经济时间序列(产出缺口,M1货币数量和实际利率)中,存在长记忆成分的强有力的统计证据。此外,在本文中,我们提出了两个分数积分矢量自回归(FIVAR)模型,它们使用两种不同的方法估算分数差异系数,目的是预测美国经济的关键宏观经济变量。将它们与标准向量自回归(VAR)模型进行了比较,结果表明FIVAR模型的预测能力明显优于传统VAR,这表明使用分数差异参数和考虑长记忆可以提供更可靠的估计(由于减少了要估算的参数)。

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